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Factors of overtraining with fuzzy ARTMAP neural networks

机译:模糊ARTMAP神经网络训练过度的因素

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In this paper, the impact of overtraining on the performance of fuzzy ARTMAP neural networks is assessed for pattern recognition problems consisting of overlapping class distributions, and consisting of complex decision boundaries with no overlap. Computer simulations are performed with fuzzy ARTMAP networks trained for one epoch, through cross-validation, and until network convergence, using several data sets representing these pattern recognition problems. By comparing the generalisation error and resources required by these networks, the extent of overtraining due to factors such as data set structure, training strategy, number of training epochs, data normalisation, and training set size, is demonstrated. A significant degradation in fuzzy ARTMAP performance due to overtraining is shown to depend on the training set size and the number of training epochs for pattern recognition problems with overlapping class distributions.
机译:在本文中,针对模式识别问题评估了过度训练对模糊ARTMAP神经网络性能的影响,该模式识别问题包括重叠的类分布和复杂的决策边界(不重叠)。通过交叉验证,使用训练了一个时期的模糊ARTMAP网络进行计算机仿真,直到网络收敛为止,使用代表这些模式识别问题的几个数据集。通过比较这些网络的泛化误差和所需资源,证明了由于诸如数据集结构,训练策略,训练时期数,数据归一化和训练集大小等因素而导致的过度训练程度。由于过度训练而导致的模糊ARTMAP性能的显着降低表明,它取决于训练集大小和具有重叠类分布的模式识别问题的训练时期数。

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